SYLGSep 25, 2023

Driving behavior-guided battery health monitoring for electric vehicles using machine learning

arXiv:2309.14125v128 citationsh-index: 42
Originality Incremental advance
AI Analysis

This work addresses battery health monitoring for electric vehicles, but it is incremental as it builds on existing feature-based methods with a focus on practicality.

The paper tackled the problem of inaccurate battery state of health (SOH) estimation in electric vehicles by proposing a machine learning pipeline that evaluates feature acquisition probability under real-world driving conditions, resulting in improved reliability by balancing performance and practicality.

An accurate estimation of the state of health (SOH) of batteries is critical to ensuring the safe and reliable operation of electric vehicles (EVs). Feature-based machine learning methods have exhibited enormous potential for rapidly and precisely monitoring battery health status. However, simultaneously using various health indicators (HIs) may weaken estimation performance due to feature redundancy. Furthermore, ignoring real-world driving behaviors can lead to inaccurate estimation results as some features are rarely accessible in practical scenarios. To address these issues, we proposed a feature-based machine learning pipeline for reliable battery health monitoring, enabled by evaluating the acquisition probability of features under real-world driving conditions. We first summarized and analyzed various individual HIs with mechanism-related interpretations, which provide insightful guidance on how these features relate to battery degradation modes. Moreover, all features were carefully evaluated and screened based on estimation accuracy and correlation analysis on three public battery degradation datasets. Finally, the scenario-based feature fusion and acquisition probability-based practicality evaluation method construct a useful tool for feature extraction with consideration of driving behaviors. This work highlights the importance of balancing the performance and practicality of HIs during the development of feature-based battery health monitoring algorithms.

Foundations

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